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An Efficient Intrusion Alerts Miner for Forensics Readiness in High Speed Networks

机译:高效的入侵警报矿工,可在高速网络中进行取证工作

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摘要

Intrusion Detection System is considered as a core tool in the collection of forensically relevant evidentiary data in real or near real time from the network. The emergence of High Speed Network (HSN) and Service orientedarchitecture/Web Services (SOA/WS) putted the IDS inface of a typical big data management problem. The log files that IDS generates are very enormous making very fastidious and both compute and memory intensive the forensics readiness process. Furthermore the high level rate of wrong alerts complicates the forensics expert alert analysis and it disproves its performance, efficiency and ability to select the best relevant evidences to attribute attacks to criminals. In this context, we propose Alert Miner (AM), an intrusion alert classifier, which classifies efficiently in near real-time the intrusion alerts in HSN for Web services. AM uses an outlier detection technique based on an adaptive deduced association rules set to classify the alerts automatically and without human assistance. AM reduces false positive alerts without losing high sensitivity (up to 95%) and accuracy up to (97%). Therefore AM facilitates the alert analysis process and allows the investigators to focus their analysis on the most critical alerts on near real-time scale and to postpone less critical alerts for an off-line log analysis.
机译:入侵检测系统被认为是从网络实时或近实时收集法证相关证据数据的核心工具。高速网络(HSN)和面向服务的体系结构/ Web服务(SOA / WS)的出现使IDS面临典型的大数据管理问题。 IDS生成的日志文件非常庞大,非常讲究,并且在计算和内存方面都占用大量的取证准备过程。此外,错误警报的高发生率使法医专家警报分析变得复杂,并且证明了其性能,效率和选择最佳相关证据以将攻击归因于罪犯的能力。在这种情况下,我们提出了Alert Miner(AM),这是一种入侵警报分类器,可以对Web服务的HSN中的入侵警报进行近实时的高效分类。 AM使用基于自适应推导的关联规则集的异常值检测技术来对警报进行自动分类,而无需人工协助。 AM减少了误报警报,而不会损失高灵敏度(高达95%)和准确性(高达97%)。因此,AM有助于警报分析过程,并允许研究人员将分析重点放在接近实时规模的最关键警报上,并将不太重要的警报推迟到离线日志分析中。

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